Seifallahi Mahmoud, Galvin James E, Ghoraani Behnaz
Department of Computer and Electrical Engineering and Computer Science, Florida Atlantic University, Boca Raton, FL, United States.
Comprehensive Center for Brain Health, Department of Neurology, University of Miami, Boca Raton, FL, United States.
Front Neurol. 2024 Jul 11;15:1354092. doi: 10.3389/fneur.2024.1354092. eCollection 2024.
Alzheimer's disease and related disorders (ADRD) progressively impair cognitive function, prompting the need for early detection to mitigate its impact. Mild Cognitive Impairment (MCI) may signal an early cognitive decline due to ADRD. Thus, developing an accessible, non-invasive method for detecting MCI is vital for initiating early interventions to prevent severe cognitive deterioration.
This study explores the utility of analyzing gait patterns, a fundamental aspect of human motor behavior, on straight and oval paths for diagnosing MCI. Using a Kinect v.2 camera, we recorded the movements of 25 body joints from 25 individuals with MCI and 30 healthy older adults (HC). Signal processing, descriptive statistical analysis, and machine learning techniques were employed to analyze the skeletal gait data in both walking conditions.
The study demonstrated that both straight and oval walking patterns provide valuable insights for MCI detection, with a notable increase in identifiable gait features in the more complex oval walking test. The Random Forest model excelled among various algorithms, achieving an 85.50% accuracy and an 83.9% F-score in detecting MCI during oval walking tests. This research introduces a cost-effective, Kinect-based method that integrates gait analysis-a key behavioral pattern-with machine learning, offering a practical tool for MCI screening in both clinical and home environments.
阿尔茨海默病及相关疾病(ADRD)会逐渐损害认知功能,因此需要早期检测以减轻其影响。轻度认知障碍(MCI)可能预示着由ADRD导致的早期认知衰退。因此,开发一种可及的、非侵入性的MCI检测方法对于启动早期干预以预防严重认知衰退至关重要。
本研究探讨了分析步态模式(人类运动行为的一个基本方面)在直线和椭圆形路径上对诊断MCI的效用。我们使用Kinect v.2摄像头记录了25名MCI患者和30名健康老年人(HC)的25个身体关节的运动。采用信号处理、描述性统计分析和机器学习技术来分析两种行走条件下的骨骼步态数据。
该研究表明,直线和椭圆形行走模式都为MCI检测提供了有价值的见解,在更复杂的椭圆形行走测试中可识别的步态特征显著增加。随机森林模型在各种算法中表现出色,在椭圆形行走测试中检测MCI时的准确率达到85.50%,F值为83.9%。本研究引入了一种基于Kinect的经济高效的方法,该方法将步态分析(一种关键的行为模式)与机器学习相结合,为临床和家庭环境中的MCI筛查提供了一种实用工具。